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首页> 外文期刊>International journal of electronic security and digital forensics >Using machine learning and the first digit law to detect forgeries in digital images
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Using machine learning and the first digit law to detect forgeries in digital images

机译:使用机器学习和第一数字定律检测数字图像中的伪造

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摘要

Digital image tampering is becoming popular and it might cause serious problems in different areas. Therefore, detection forgeries in digital images are an urgent need. There are various forgery types, which can be exposed by different forensic techniques. In this paper, we propose a new detection scheme using the first-digit law (also known as Benford's law) in order to identify several types of image forgeries. We extract specific features, which are fed to a machine learning based classifier in order to distinguish between original images and manipulated images. Through experiments, we found that the proposed scheme works well for detecting double JPEG compression and Gaussian noise addition. Copy-move is among the most popular types of image forgeries, where a part of an image is copied and pasted to another position of the same image. However, we show this manipulation does not affect the law. Experiments on a large-scale image dataset show that the proposed scheme is reliable and it can achieve detection rate up to 90% or higher.
机译:数字图像篡改正变得越来越普遍,它可能会在不同领域引起严重的问题。因此,迫切需要数字图像中的检测伪造。伪造类型多种多样,可以通过不同的鉴识技术来揭露。在本文中,我们提出了一种使用第一数字定律(也称为本福德定律)的新检测方案,以识别几种类型的图像伪造。我们提取特定的特征,这些特征被馈送到基于机器学习的分类器中,以区分原始图像和操纵图像。通过实验,我们发现该方案可以很好地检测双重JPEG压缩和高斯噪声相加。复制移动是最受欢迎的图像伪造类型之一,其中图像的一部分被复制并粘贴到同一图像的另一个位置。但是,我们显示此操作不会影响法律。在大规模图像数据集上的实验表明,该方案是可靠的,并且可以实现高达90%或更高的检测率。

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